Hodgson Dave, Townley Stuart, McCarthy Dominic
Centre for Ecology and Conservation, School of Biosciences, University of Exeter in Cornwall, Tremough, TR10 9EZ, UK.
Theor Popul Biol. 2006 Sep;70(2):214-24. doi: 10.1016/j.tpb.2006.03.004. Epub 2006 May 30.
Matrix-based models lie at the core of many applications across the physical, engineering and life sciences. In ecology, matrix models arise naturally via population projection matrices (PPM). The eigendata of PPMs provide detailed quantitative and qualitative information on the dynamic behaviour of model populations, especially their asymptotic rates of growth or decline. A fundamental task in modern ecology is to assess the effect that perturbations to life-cycle transition rates of individuals have on such eigendata. The prevailing assessment tools in ecological applications of PPMs are direct matrix simulations of eigendata and linearised extrapolations to the typically non-linear relationship between perturbation magnitude and the resulting matrix eigenvalues. In recent years, mathematical systems theory has developed an analytical framework, called 'Robustness Analysis and Robust Control', encompassing also algorithms and numerical tools. This framework provides a systematic and precise approach to studying perturbations and uncertainty in systems represented by matrices. Here we lay down the foundations and concepts for a 'robustness' inspired approach to predictive analyses in population ecology. We treat a number of application-specific perturbation problems and show how they can be formulated and analysed using these robustness methodologies.
基于矩阵的模型是物理、工程和生命科学等众多应用的核心。在生态学中,矩阵模型通过种群投影矩阵(PPM)自然产生。PPM的特征数据提供了有关模型种群动态行为的详细定量和定性信息,尤其是它们的渐近增长率或下降率。现代生态学的一项基本任务是评估个体生命周期转变率的扰动对这类特征数据的影响。PPM在生态应用中的主要评估工具是特征数据的直接矩阵模拟以及对扰动幅度与所得矩阵特征值之间典型非线性关系的线性化外推。近年来,数学系统理论已经开发出一个分析框架,称为“鲁棒性分析与鲁棒控制”,其中还包括算法和数值工具。该框架为研究矩阵表示的系统中的扰动和不确定性提供了一种系统且精确的方法。在这里,我们为种群生态学中受“鲁棒性”启发的预测分析方法奠定基础并阐述概念。我们处理了一些特定应用的扰动问题,并展示了如何使用这些鲁棒性方法对它们进行公式化和分析。